Self-supervised anomaly pattern detection for large scale industrial data

被引:11
|
作者
Tang, Xiaoyue [1 ]
Zeng, Shan [1 ]
Yu, Fang [2 ]
Yu, Wei [2 ]
Sheng, Zhongyin [1 ]
Kang, Zhen [1 ]
机构
[1] Wuhan Polytechn Univ, Sch Math & Comp Sci, Wuhan 430023, Hubei, Peoples R China
[2] Wuhan Univ, Sch Comp Sci, Wuhan 430072, Hubei, Peoples R China
关键词
Data augmentation; Anomaly detection; Industrial data;
D O I
10.1016/j.neucom.2022.09.069
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
Detecting the anomalies in a large amounts of high-dimensional data has been a challenging task. In the Industry 4.0 environment, large-scale high-dimensional monitoring data features the complex pattern of high level semantics. In order to provide enterprise-wide monitoring solutions, it is necessary to identify the high-level semantic patterns of the anomalies in these data without splitting them. Existing end-to-end deep neural networks for time series are capable of recognizing the high-level semantics in natural language or speech signals, but they are barely applied in real-time anomaly detection of industrial data because of the large time costs. In this paper, we leverage the self-supervised contrastive learning methodology and propose a Composite Semantic Augmentation Encoder (CSAE) to provide an appropriate representation of industrial data and implement quick detection of anomalies in industrial application environments. CSAE is a non-sequential deep neural network with two augmentation layers and a mandatory layer. The two layers of data-augmentation are built to expand the size of samples of both low-level semantic anomalies and high-level semantic anomalies, which enables CSAE to discover diverse anomalies and improves its accuracy of high-level semantic pattern recognition. The mandatory layer is built to compress and reserve the temporal information in the industrial data to accelerate the anomaly detection. Therefore, as a non-sequential contrastive learning model, CSAE has faster training convergence than the usual sequence models. The experiment results have verified that CSAE can achieve higher prediction accuracy with less time consumption than existing machine learning models in the tasks of high dimensional anomaly pattern detection. (C) 2022 Elsevier B.V. All rights reserved.
引用
收藏
页码:1 / 12
页数:12
相关论文
共 50 条
  • [21] Self-Supervised Anomaly Detection from Distributed Traces
    Bogatinovski, Jasmin
    Nedelkoski, Sasho
    Cardoso, Jorge
    Kao, Odej
    2020 IEEE/ACM 13TH INTERNATIONAL CONFERENCE ON UTILITY AND CLOUD COMPUTING (UCC 2020), 2020, : 342 - 347
  • [22] Self-supervised Learning for Anomaly Detection in Fundus Image
    Ahn, Sangil
    Shin, Jitae
    OPHTHALMIC MEDICAL IMAGE ANALYSIS, OMIA 2022, 2022, 13576 : 143 - 151
  • [23] CutPaste: Self-Supervised Learning for Anomaly Detection and Localization
    Li, Chun-Liang
    Sohn, Kihyuk
    Yoon, Jinsung
    Pfister, Tomas
    2021 IEEE/CVF CONFERENCE ON COMPUTER VISION AND PATTERN RECOGNITION, CVPR 2021, 2021, : 9659 - 9669
  • [24] SMD Anomaly Detection: A Self-Supervised Texture-Structure Anomaly Detection Framework
    Luo, Jiaxiang
    Lin, Junbin
    Yang, Zhiyu
    Liu, Haiming
    IEEE TRANSACTIONS ON INSTRUMENTATION AND MEASUREMENT, 2022, 71
  • [25] A Multi-head Attention Self-supervised Representation Model for Industrial Sensors Anomaly Detection
    Qiao, Yiqun
    Lu, Jinhu
    Wang, Tian
    Liu, Kexin
    Zhang, Baochang
    Snoussi, Hichem
    IEEE TRANSACTIONS ON INDUSTRIAL INFORMATICS, 2024, 20 (02) : 2190 - 2199
  • [26] Self-supervised Anomaly Detection by Self-distillation and Negative Sampling
    Rafiee, Nima
    Gholamipoor, Rahil
    Adaloglou, Nikolas
    Jaxy, Simon
    Ramakers, Julius
    Kollmann, Markus
    ARTIFICIAL NEURAL NETWORKS AND MACHINE LEARNING - ICANN 2022, PT IV, 2022, 13532 : 459 - 470
  • [27] Self-Supervised Learning for Online Anomaly Detection in High-Dimensional Data Streams
    Mozaffari, Mahsa
    Doshi, Keval
    Yilmaz, Yasin
    ELECTRONICS, 2023, 12 (09)
  • [28] Generative and Contrastive Self-Supervised Learning for Graph Anomaly Detection
    Zheng, Yu
    Jin, Ming
    Liu, Yixin
    Chi, Lianhua
    Phan, Khoa T.
    Chen, Yi-Ping Phoebe
    IEEE TRANSACTIONS ON KNOWLEDGE AND DATA ENGINEERING, 2023, 35 (12) : 12220 - 12233
  • [29] Classification-Based Self-Supervised Learning for Anomaly Detection
    Li, Honghu
    Zhu, Yuesheng
    He, Ying
    THIRTEENTH INTERNATIONAL CONFERENCE ON DIGITAL IMAGE PROCESSING (ICDIP 2021), 2021, 11878
  • [30] A NOVEL CONTRASTIVE LEARNING FRAMEWORK FOR SELF-SUPERVISED ANOMALY DETECTION
    Li, Jingze
    Lian, Zhichao
    Li, Min
    2022 IEEE INTERNATIONAL CONFERENCE ON IMAGE PROCESSING, ICIP, 2022, : 3366 - 3370